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refinire-rag

The refined RAG framework that makes enterprise-grade document processing effortless.

🌟 Why refinire-rag?

Traditional RAG frameworks are powerful but complex. refinire-rag refines the development experience with radical simplicity and enterprise-grade productivity.

99.1% Test Pass Rate - Enterprise-grade reliability
81.6 Tests/KLOC - Industry-leading quality
2,377+ Tests - Comprehensive validation

→ Why refinire-rag? The Complete Story | → なぜrefinire-rag?完全版

⚡ 10x Simpler Development

# LangChain: 50+ lines of complex setup
# refinire-rag: 5 lines to production-ready RAG
manager = CorpusManager()
results = manager.import_original_documents("my_corpus", "documents/", "*.md")
processed = manager.rebuild_corpus_from_original("my_corpus")
query_engine = QueryEngine(corpus_name="my_corpus", retrievers=manager.retrievers)
answer = query_engine.query("How does this work?")

🏢 Enterprise-Ready Features Built-In

  • Incremental Processing: Handle 10,000+ documents efficiently
  • Japanese Optimization: Built-in linguistic processing
  • Access Control: Department-level data isolation
  • Production Monitoring: Comprehensive observability
  • Unified Architecture: One pattern for everything

Overview

refinire-rag provides RAG (Retrieval-Augmented Generation) functionality as a sub-package of the Refinire library. The library follows a unified DocumentProcessor architecture with dependency injection for maximum flexibility and enterprise-grade capabilities.

Architecture

Application Classes (Refinire Steps)

  • CorpusManager: Document loading, normalization, chunking, embedding generation, and storage
  • QueryEngine: Document retrieval, re-ranking, and answer generation (inherits from Refinire Step)
  • QualityLab: Evaluation data creation, automatic RAG evaluation, conflict detection, and report generation

DocumentProcessor Unified Architecture

All document processing components inherit from a single base class with consistent interface:

Document Processing Pipeline

  • UniversalLoader: Multi-format document loading with parallel processing
  • Normalizer: Dictionary-based term normalization and linguistic optimization
  • Chunker: Intelligent document chunking for optimal embedding
  • DictionaryMaker: Term and abbreviation extraction with LLM integration
  • GraphBuilder: Knowledge graph construction and relationship extraction
  • VectorStore: Integrated embedding generation, vector storage, and retrieval (DocumentProcessor + Indexer + Retriever)

Quality & Evaluation

  • TestSuite: Comprehensive evaluation pipeline execution
  • Evaluator: Multi-metric aggregation and analysis
  • ContradictionDetector: Automated conflict detection with NLI
  • InsightReporter: Intelligent threshold-based reporting

Query Processing Components

  • Retriever: Semantic and hybrid document search
  • Reranker: Context-aware result re-ranking
  • Reader: LLM-powered answer generation

Architecture Highlights

DocumentProcessor Unified Architecture

All document processing components inherit from a single base class with consistent process(document) -> List[Document] interface:

# Every processor follows the same pattern (統合アーキテクチャ)
normalizer = Normalizer(config)
chunker = Chunker(config)
vector_store = InMemoryVectorStore()  # VectorStore直接使用
vector_store.set_embedder(embedder)   # 埋め込み設定

# Chain them together - VectorStoreを直接パイプラインで使用
pipeline = DocumentPipeline([normalizer, chunker, vector_store])
results = pipeline.process_document(document)

Incremental Processing

Efficient handling of large document collections with automatic change detection:

# Only process new/changed files
incremental_loader = IncrementalLoader(document_store, cache_file=".cache.json")
results = incremental_loader.process_incremental(["documents/"])
# Skips unchanged files, processes only what's needed

Enterprise-Ready Features

  • Multi-format document loading with parallel processing (detailed guide)
  • Japanese text optimization with linguistic normalization
  • Department-level data isolation patterns
  • Comprehensive monitoring and error handling
  • Production deployment ready configurations

🚀 Quick Start

Installation

pip install refinire-rag

30-Second RAG System

from refinire_rag import create_simple_rag

# One-liner enterprise RAG
rag = create_simple_rag("your_documents/")
answer = rag.query("How does this work?")
print(answer)

Production-Ready Setup

from refinire_rag.application import CorpusManager, QueryEngine, QualityLab
from refinire_rag.storage import SQLiteDocumentStore, InMemoryVectorStore
from refinire_rag.retrieval import SimpleRetriever

# Configure storage
doc_store = SQLiteDocumentStore("corpus.db")
vector_store = InMemoryVectorStore()
retriever = SimpleRetriever(vector_store=vector_store)

# Build corpus with incremental processing
manager = CorpusManager(document_store=doc_store, retrievers=[retriever])
results = manager.import_original_documents("company_docs", "documents/", "*.pdf")
processed = manager.rebuild_corpus_from_original("company_docs")

# Query with confidence
query_engine = QueryEngine(corpus_name="company_docs", retrievers=[retriever])
result = query_engine.query("What is our company policy on remote work?")

# Evaluate quality
quality_lab = QualityLab(corpus_manager=manager)
eval_results = quality_lab.run_full_evaluation("qa_set", "company_docs", query_engine)

Enterprise Features

# Incremental updates (90%+ time savings on large corpora)
incremental_loader = IncrementalLoader(document_store, cache_file=".cache.json")
results = incremental_loader.process_incremental(["documents/"])

# Department-level data isolation (Tutorial 5 pattern)
hr_rag = CorpusManager.create_simple_rag(hr_doc_store, hr_vector_store)
sales_rag = CorpusManager.create_simple_rag(sales_doc_store, sales_vector_store)

# Production monitoring
stats = corpus_manager.get_corpus_stats()

🏆 Framework Comparison

Feature LangChain/LlamaIndex refinire-rag Advantage
Development Speed Complex setup 5-line setup 90% faster
Enterprise Features Custom development Built-in Ready out-of-box
Japanese Processing Additional work Optimized Native support
Incremental Updates Manual implementation Automatic 90% time savings
Code Consistency Component-specific APIs Unified interface Easier maintenance
Team Productivity Steep learning curve Single pattern Faster onboarding

📚 Documentation

🎯 Tutorials

Learn how to build RAG systems step by step - from simple prototypes to enterprise deployment.

🚀 Core Tutorial Series (Start Here!)

Complete 3-part tutorial series covering the entire RAG workflow:

📖 Additional Tutorials

🔧 Plugin Development

📖 API Reference

Detailed API documentation for each module.

🏗️ Architecture & Design

System design philosophy and implementation details.

Key Features

Flexible Document Model

  • Minimal required metadata (4 fields)
  • Completely flexible additional metadata
  • Database-friendly design for search and lineage tracking

Parallel Processing

  • Concurrent document loading with ThreadPoolExecutor/ProcessPoolExecutor
  • Async support for high-throughput scenarios
  • Progress tracking and error recovery

Extension-Based Architecture

  • Universal loader delegates to specialized loaders by file extension
  • Easy registration of custom loaders
  • Subpackage support for advanced processing (Docling, Unstructured, etc.)

Metadata Enrichment

  • Path-based metadata generation with pattern matching
  • Automatic file type detection and classification
  • Custom metadata generators for domain-specific requirements

Error Handling

  • Comprehensive exception hierarchy
  • Configurable error handling (fail-fast or skip-errors)
  • Detailed error reporting and logging

Development

Quality Metrics

  • Test Coverage: 2,377+ tests across 108 test files
  • Pass Rate: 99.1% (enterprise-grade reliability)
  • Test Density: 81.6 tests/KLOC (industry-leading)
  • Architecture: DocumentProcessor unified interface

Running Tests

# Activate virtual environment
source .venv/bin/activate

# Run all tests with coverage
pytest --cov=refinire_rag

# Run specific test categories
pytest tests/unit/        # Unit tests
pytest tests/integration/ # Integration tests
pytest tests/test_corpus_manager_*.py  # Corpus management tests
pytest tests/test_quality_lab_*.py     # Evaluation tests

# Run examples
python examples/simple_rag_test.py

Project Structure

refinire-rag/
├── src/refinire_rag/          # Main package
│   ├── models/                # Data models
│   ├── loaders/              # Document loading system
│   ├── processing/           # Document processing pipeline
│   ├── storage/              # Storage systems
│   ├── application/            # Use case classes
│   └── retrieval/            # Search and answer generation
├── docs/                     # Architecture documentation
├── examples/                 # Usage examples
└── tests/                    # Test suite
    ├── unit/                 # Unit tests
    └── integration/          # Integration tests

Contributing

This project follows the architecture defined in the documentation. When implementing new features:

  1. Follow the DocumentProcessor interface patterns
  2. Maintain dependency injection for testability
  3. Add comprehensive error handling and logging
  4. Include usage examples and tests
  5. Update documentation for new features

📝 Documentation Languages

  • 🇬🇧 English: Default file names (e.g., tutorial_01_basic_rag.md)
  • 🇯🇵 Japanese: File names with _ja suffix (e.g., tutorial_01_basic_rag_ja.md)

🔗 Related Links

License

[License information to be added]


refinire-rag: Where enterprise RAG development becomes effortless.

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